ashlar


Nameashlar JSON
Version 1.19.0 PyPI version JSON
download
home_pagehttps://github.com/sorgerlab/ashlar
SummaryAlignment by Simultaneous Harmonization of Layer/Adjacency Registration
upload_time2024-11-25 03:28:02
maintainerNone
docs_urlNone
authorJeremy Muhlich
requires_pythonNone
licenseMIT License
keywords scripts microscopy registration stitching
VCS
bugtrack_url
requirements No requirements were recorded.
Travis-CI No Travis.
coveralls test coverage No coveralls.
            

ASHLAR: Alignment by Simultaneous Harmonization of Layer/Adjacency Registration

Ashlar implements efficient combined stitching and registration of multi-channel
image mosaics collected using the Tissue-CycIF microscopy protocol [1]_. Although
originally developed for CycIF, it may also be applicable to other tiled and/or
cyclic imaging approaches. The package offers both a command line script for the
most common use cases as well as an API for building more specialized tools.

.. [1] Tissue-CycIF is multi-round immunofluorescence microscopy on large fixed
   tissue samples. See https://doi.org/10.1101/151738 for details.




            

Raw data

            {
    "_id": null,
    "home_page": "https://github.com/sorgerlab/ashlar",
    "name": "ashlar",
    "maintainer": null,
    "docs_url": null,
    "requires_python": null,
    "maintainer_email": null,
    "keywords": "scripts, microscopy, registration, stitching",
    "author": "Jeremy Muhlich",
    "author_email": "jeremy_muhlich@hms.harvard.edu",
    "download_url": "https://files.pythonhosted.org/packages/e5/2c/0f8d9ef32c7aaed3db80417ca68e49a2a55a15cc8f8dc592a66389249f53/ashlar-1.19.0.tar.gz",
    "platform": null,
    "description": "\n\nASHLAR: Alignment by Simultaneous Harmonization of Layer/Adjacency Registration\n\nAshlar implements efficient combined stitching and registration of multi-channel\nimage mosaics collected using the Tissue-CycIF microscopy protocol [1]_. Although\noriginally developed for CycIF, it may also be applicable to other tiled and/or\ncyclic imaging approaches. The package offers both a command line script for the\nmost common use cases as well as an API for building more specialized tools.\n\n.. [1] Tissue-CycIF is multi-round immunofluorescence microscopy on large fixed\n   tissue samples. See https://doi.org/10.1101/151738 for details.\n\n\n\n",
    "bugtrack_url": null,
    "license": "MIT License",
    "summary": "Alignment by Simultaneous Harmonization of Layer/Adjacency Registration",
    "version": "1.19.0",
    "project_urls": {
        "Download": "https://github.com/sorgerlab/ashlar/archive/v1.19.0.tar.gz",
        "Homepage": "https://github.com/sorgerlab/ashlar"
    },
    "split_keywords": [
        "scripts",
        " microscopy",
        " registration",
        " stitching"
    ],
    "urls": [
        {
            "comment_text": "",
            "digests": {
                "blake2b_256": "e52c0f8d9ef32c7aaed3db80417ca68e49a2a55a15cc8f8dc592a66389249f53",
                "md5": "8bed0f5d5a5ecb39e9ab7c440e192a95",
                "sha256": "d51d680681bd5d63ae40d92a035705f87a1963b49a8d9154802368ce4f3eca91"
            },
            "downloads": -1,
            "filename": "ashlar-1.19.0.tar.gz",
            "has_sig": false,
            "md5_digest": "8bed0f5d5a5ecb39e9ab7c440e192a95",
            "packagetype": "sdist",
            "python_version": "source",
            "requires_python": null,
            "size": 43095131,
            "upload_time": "2024-11-25T03:28:02",
            "upload_time_iso_8601": "2024-11-25T03:28:02.563298Z",
            "url": "https://files.pythonhosted.org/packages/e5/2c/0f8d9ef32c7aaed3db80417ca68e49a2a55a15cc8f8dc592a66389249f53/ashlar-1.19.0.tar.gz",
            "yanked": false,
            "yanked_reason": null
        }
    ],
    "upload_time": "2024-11-25 03:28:02",
    "github": true,
    "gitlab": false,
    "bitbucket": false,
    "codeberg": false,
    "github_user": "sorgerlab",
    "github_project": "ashlar",
    "travis_ci": false,
    "coveralls": false,
    "github_actions": true,
    "lcname": "ashlar"
}
        
Elapsed time: 4.57930s